Incorporating Navigation Context into Inland Vessel Trajectory Prediction: A Gaussian Mixture Model and Transformer Approach
Kathrin Donandt, Dirk S\"offker

TL;DR
This paper enhances inland vessel trajectory prediction by integrating navigation context through Gaussian Mixture Models and a transformer, capturing multi-modal distributions to improve accuracy over previous models.
Contribution
It introduces a novel approach that uses distribution-based features from GMMs to incorporate navigation context into a transformer model for vessel trajectory prediction.
Findings
Model outperforms previous transformer-based VTP models.
Distribution features improve prediction accuracy.
Method is validated across three different river sections.
Abstract
Using data sources beyond the Automatic Identification System to represent the context a vessel is navigating in and consequently improve situation awareness is still rare in machine learning approaches to vessel trajectory prediction (VTP). In inland shipping, where vessel movement is constrained within fairways, navigational context information is indispensable. In this contribution targeting inland VTP, Gaussian Mixture Models (GMMs) are applied, on a fused dataset of AIS and discharge measurements, to generate multi-modal distribution curves, capturing typical lateral vessel positioning in the fairway and dislocation speeds along the waterway. By sampling the probability density curves of the GMMs, feature vectors are derived which are used, together with spatio-temporal vessel features and fairway geometries, as input to a VTP transformer model. The incorporation of these…
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Taxonomy
TopicsMaritime Navigation and Safety · Ship Hydrodynamics and Maneuverability · Maritime Transport Emissions and Efficiency
